I have been using the sklearn.decomposition.LatentDirichletAllocation module to explore a corpus of documents. After a number of iterations of training and adjusting the model (i.e. adding stopwords and synonyms, varying the number of topics), I am fairly happy and familiar with the distilled topics. As a next step I would like to apply the trained model to a new corpus.
Is it possible to apply the fitted model to a new set of documents to determine the topic distributions.
I know this is possible within the gensim library, where you can train a model:
from gensim.test.utils import common_texts
from gensim.corpora.dictionary import Dictionary
# Create a corpus from a list of texts
common_dictionary = Dictionary(common_texts)
common_corpus = [common_dictionary.doc2bow(text) for text in common_texts]
lda = LdaModel(common_corpus, num_topics=10)
And subsequently apply the trained model to a new corpus:
Topic_distribtutions = lda[unseen_doc]
from: https://radimrehurek.com/gensim/models/ldamodel.html
How does one do this using the scikit-learn application of LDA?